Soft Counting Poisson Mixture Model-Based Polling Method for Speech/Nonspeech Classification(Speech and Hearing)
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概要
- 論文の詳細を見る
In this letter, a new segment-level speech/nonspeech classification method based on the Poisson polling technique is proposed. The proposed method makes two modifications from the baseline Poisson polling method to further improve the classification accuracy. One of them is to employ Poisson mixture models to more accurately represent various segmental patterns of the observed frequencies for frame-level input features. The other is the soft counting-based frequency estimation to improve the reliability of the observed frequencies. The effectiveness of the proposed method is confirmed by the experimental results showing the maximum error reduction of 39% compared to the segmentally accumulated log-likelihood ratio-based method.
- 社団法人電子情報通信学会の論文
- 2006-12-01
著者
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Hahn Minsoo
School Of Engineering Information And Communications University
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Kim Hoirin
School Of Engineering At Information And Communications University
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Kim Hoirin
School Of Engineering Information And Communications University
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SUH Youngjoo
School of Engineering at Information and Communications University
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Suh Youngjoo
Korea Advanced Inst. Sci. And Technol. Daejeon Kor
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LEE Yongju
Division of Electrical, Electronic and Information Engineering, Wonkwang University
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Lee Yongju
Division Of Electrical Electronic And Information Engineering Wonkwang University
関連論文
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- Text-Independent Speaker Identification in a Distant-Talking Multi-Microphone Environment(Speech and Hearing)
- Response Time Reduction of Speech Recognizers Using Single Gaussians(Speech and Hearing)
- Histogram Equalization Utilizing Window-Based Smoothed CDF Estimation for Feature Compensation
- Soft Counting Poisson Mixture Model-Based Polling Method for Speech/Nonspeech Classification(Speech and Hearing)
- Noise Robust Speaker Identification Using Sub-Band Weighting in Multi-Band Approach